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Cuff-less continuous blood pressure estimation from Electrocardiogram(ECG) and Photoplethysmography (PPG) signals with artificial neural network

机译:利用人工神经网络从心电图(ECG)和光体积描记术(PPG)信号进行无袖连续血压估计

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Continuous blood measurement important information about the health status of the individuals. Conventional methods use a cuff for blood pressure measurement and cannot be measured continuously. In this study, we proposed a system that estimates systolic blood pressure (SP) and diastolic blood pressure (DP) for each heart beat by extracting attributes from ECG and PPG signals. Simultaneous ECG and PPG signals from the PhysioNet Database are pre-processed (denoising, artifact cleaning and baseline wandering) to remove noise and artifacts and segmented into R-R peaks. For each heartbeat, 22-time domain features were extracted from ECG and PPG signals. SP and DP values were estimated by introducing these 22 attributes to the model of Lavenberg-Marquardt artificial neural networks (ANN). Arterial blood pressure (ABP) was also taken from the PhysioNet MIMIC II database along with ECG and PPG signals. ABP signals have been used as targets in the artificial neural network. The system performance has been evaluated by calculating the difference between the estimated ABP values and the actual by the ANN model. The performance value between the predicted SP and actual SP values is -0.14 ± 2.55 (mean ± standard deviation) and the performance value between estimated DP and actual DP values is -0.004 ± 1.6. The obtained results have shown that the proposed model has predicted blood pressure with high accuracy. In this study, SP and DP values can also be measured directly without any calibration in blood pressure estimation.
机译:持续的血液测量有关个人健康状况的重要信息。常规方法使用袖带进行血压测量并且不能连续测量。在这项研究中,我们提出了一种通过从ECG和PPG信号中提取属性来估计每个心跳的收缩压(SP)和舒张压(DP)的系统。对来自PhysioNet数据库的同时ECG和PPG信号进行预处理(去噪,伪影清理和基线漂移),以去除噪声和伪影,并将其分割为R-R峰。对于每个心跳,从ECG和PPG信号中提取22时域特征。通过将这22个属性引入Lavenberg-Marquardt人工神经网络(ANN)模型,可以估算SP和DP值。还从PhysioNet MIMIC II数据库中获取了动脉血压(ABP)以及ECG和PPG信号。 ABP信号已被用作人工神经网络中的目标。通过使用ANN模型计算估计的ABP值与实际值之间的差异来评估系统性能。预测SP值和实际SP值之间的性能值为-0.14±2.55(均值±标准偏差),而估计DP值和实际DP值之间的性能值为-0.004±1.6。获得的结果表明,所提出的模型可以高精度地预测血压。在这项研究中,SP和DP值也可以直接测量,而无需在血压估算中进行任何校准。

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